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Speech enhancement through improvised conditional generative adversarial networks

机译:通过简易条件生成的对抗网络进行语音增强

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摘要

Speech enhancement works towards improvising the quality of speech through various post processing algorithms. Intelligibility enhancement along with overall perceptual quality score improvement is the main objective of many speech signal processing techniques. Generative Adversarial Networks (GAN) aims to generate a new set of data with the help of training set statistics and is seen to be impressive for enhancing the speech signals in the recent years. Though GAN's does not involve prior and posterior probability calculations, they are hard to train in general. The problem aggravates with low-data regime and hence there is a need for effective GAN mechanism. In this research work, we propose to use an improvised conditional generative adversarial network where the generator will enhance the input data that is noisy while the discriminator on the other hand embedded with improvised techniques will try to differentiate between the generator output and the database clean content with the help of GAN conditions discussed. The results of the proposed method are assessed in terms of PEAQ score and equal error rate. Experimental results from the Aurora-2 signal set proves us that the improved cGAN is very effective as compared to traditional GAN networks. We have also tested the algorithm with the subjective preference and 82.14% of the subjects were found to prefer the proposed cGAN to that obtained with other conventional methods.
机译:语音增强旨在通过各种后处理算法提高语音质量。可智能化增强以及整体感知质量分数改进是许多语音信号处理技术的主要目标。生成的对策网络(GaN)旨在在培训集统计数据的帮助下生成一组新的数据,并且被认为令人印象深刻,以便在近年来提升语音信号。虽然甘甘不涉及先前和后后概率计算,但它们很难一般训练。问题与低数据制度加剧,因此需要有效的GaN机制。在这项研究工作中,我们建议使用即兴的条件生成的对抗网络,其中发电机将增强噪声的输入数据,而嵌入具有简易技术的鉴别器将尝试区分发电机输出和数据库清洁内容借助GaN条件讨论。在PEAQ评分和相同的错误率方面评估了该方法的结果。 Aurora-2信号集的实验结果证明,与传统的GAN网络相比,改进的Cgan非常有效。我们还测试了具有主观偏好的算法,发现82.14%的受试者更喜欢用其他常规方法获得的提出的CGAN。

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